""" parquet compat """
from __future__ import annotations

import io
import os
from typing import Any
from warnings import catch_warnings

from pandas._typing import (
    FilePath,
    ReadBuffer,
    StorageOptions,
    WriteBuffer,
)
from pandas.compat._optional import import_optional_dependency
from pandas.errors import AbstractMethodError
from pandas.util._decorators import doc

from pandas import (
    DataFrame,
    MultiIndex,
    get_option,
)
from pandas.core.shared_docs import _shared_docs
from pandas.util.version import Version

from pandas.io.common import (
    IOHandles,
    get_handle,
    is_fsspec_url,
    is_url,
    stringify_path,
)


def get_engine(engine: str) -> BaseImpl:
    """return our implementation"""
    if engine == "auto":
        engine = get_option("io.parquet.engine")

    if engine == "auto":
        # try engines in this order
        engine_classes = [PyArrowImpl, FastParquetImpl]

        error_msgs = ""
        for engine_class in engine_classes:
            try:
                return engine_class()
            except ImportError as err:
                error_msgs += "\n - " + str(err)

        raise ImportError(
            "Unable to find a usable engine; "
            "tried using: 'pyarrow', 'fastparquet'.\n"
            "A suitable version of "
            "pyarrow or fastparquet is required for parquet "
            "support.\n"
            "Trying to import the above resulted in these errors:"
            f"{error_msgs}"
        )

    if engine == "pyarrow":
        return PyArrowImpl()
    elif engine == "fastparquet":
        return FastParquetImpl()

    raise ValueError("engine must be one of 'pyarrow', 'fastparquet'")


def _get_path_or_handle(
    path: FilePath | ReadBuffer[bytes] | WriteBuffer[bytes],
    fs: Any,
    storage_options: StorageOptions = None,
    mode: str = "rb",
    is_dir: bool = False,
) -> tuple[
    FilePath | ReadBuffer[bytes] | WriteBuffer[bytes], IOHandles[bytes] | None, Any
]:
    """File handling for PyArrow."""
    path_or_handle = stringify_path(path)
    if is_fsspec_url(path_or_handle) and fs is None:
        fsspec = import_optional_dependency("fsspec")

        fs, path_or_handle = fsspec.core.url_to_fs(
            path_or_handle, **(storage_options or {})
        )
    elif storage_options and (not is_url(path_or_handle) or mode != "rb"):
        # can't write to a remote url
        # without making use of fsspec at the moment
        raise ValueError("storage_options passed with buffer, or non-supported URL")

    handles = None
    if (
        not fs
        and not is_dir
        and isinstance(path_or_handle, str)
        and not os.path.isdir(path_or_handle)
    ):
        # use get_handle only when we are very certain that it is not a directory
        # fsspec resources can also point to directories
        # this branch is used for example when reading from non-fsspec URLs
        handles = get_handle(
            path_or_handle, mode, is_text=False, storage_options=storage_options
        )
        fs = None
        path_or_handle = handles.handle
    return path_or_handle, handles, fs


class BaseImpl:
    @staticmethod
    def validate_dataframe(df: DataFrame) -> None:

        if not isinstance(df, DataFrame):
            raise ValueError("to_parquet only supports IO with DataFrames")

        # must have value column names for all index levels (strings only)
        if isinstance(df.columns, MultiIndex):
            if not all(
                x.inferred_type in {"string", "empty"} for x in df.columns.levels
            ):
                raise ValueError(
                    """
                    parquet must have string column names for all values in
                     each level of the MultiIndex
                    """
                )
        else:
            if df.columns.inferred_type not in {"string", "empty"}:
                raise ValueError("parquet must have string column names")

        # index level names must be strings
        valid_names = all(
            isinstance(name, str) for name in df.index.names if name is not None
        )
        if not valid_names:
            raise ValueError("Index level names must be strings")

    def write(self, df: DataFrame, path, compression, **kwargs):
        raise AbstractMethodError(self)

    def read(self, path, columns=None, **kwargs) -> DataFrame:
        raise AbstractMethodError(self)


class PyArrowImpl(BaseImpl):
    def __init__(self):
        import_optional_dependency(
            "pyarrow", extra="pyarrow is required for parquet support."
        )
        import pyarrow.parquet

        # import utils to register the pyarrow extension types
        import pandas.core.arrays._arrow_utils  # noqa:F401

        self.api = pyarrow

    def write(
        self,
        df: DataFrame,
        path: FilePath | WriteBuffer[bytes],
        compression: str | None = "snappy",
        index: bool | None = None,
        storage_options: StorageOptions = None,
        partition_cols: list[str] | None = None,
        **kwargs,
    ) -> None:
        self.validate_dataframe(df)

        from_pandas_kwargs: dict[str, Any] = {"schema": kwargs.pop("schema", None)}
        if index is not None:
            from_pandas_kwargs["preserve_index"] = index

        table = self.api.Table.from_pandas(df, **from_pandas_kwargs)

        path_or_handle, handles, kwargs["filesystem"] = _get_path_or_handle(
            path,
            kwargs.pop("filesystem", None),
            storage_options=storage_options,
            mode="wb",
            is_dir=partition_cols is not None,
        )
        if (
            isinstance(path_or_handle, io.BufferedWriter)
            and hasattr(path_or_handle, "name")
            and isinstance(path_or_handle.name, (str, bytes))
        ):
            path_or_handle = path_or_handle.name

        try:
            if partition_cols is not None:
                # writes to multiple files under the given path
                self.api.parquet.write_to_dataset(
                    table,
                    path_or_handle,
                    compression=compression,
                    partition_cols=partition_cols,
                    **kwargs,
                )
            else:
                # write to single output file
                self.api.parquet.write_table(
                    table, path_or_handle, compression=compression, **kwargs
                )
        finally:
            if handles is not None:
                handles.close()

    def read(
        self,
        path,
        columns=None,
        use_nullable_dtypes=False,
        storage_options: StorageOptions = None,
        **kwargs,
    ) -> DataFrame:
        kwargs["use_pandas_metadata"] = True

        to_pandas_kwargs = {}
        if use_nullable_dtypes:
            import pandas as pd

            mapping = {
                self.api.int8(): pd.Int8Dtype(),
                self.api.int16(): pd.Int16Dtype(),
                self.api.int32(): pd.Int32Dtype(),
                self.api.int64(): pd.Int64Dtype(),
                self.api.uint8(): pd.UInt8Dtype(),
                self.api.uint16(): pd.UInt16Dtype(),
                self.api.uint32(): pd.UInt32Dtype(),
                self.api.uint64(): pd.UInt64Dtype(),
                self.api.bool_(): pd.BooleanDtype(),
                self.api.string(): pd.StringDtype(),
            }
            to_pandas_kwargs["types_mapper"] = mapping.get
        manager = get_option("mode.data_manager")
        if manager == "array":
            to_pandas_kwargs["split_blocks"] = True  # type: ignore[assignment]

        path_or_handle, handles, kwargs["filesystem"] = _get_path_or_handle(
            path,
            kwargs.pop("filesystem", None),
            storage_options=storage_options,
            mode="rb",
        )
        try:
            result = self.api.parquet.read_table(
                path_or_handle, columns=columns, **kwargs
            ).to_pandas(**to_pandas_kwargs)
            if manager == "array":
                result = result._as_manager("array", copy=False)
            return result
        finally:
            if handles is not None:
                handles.close()


class FastParquetImpl(BaseImpl):
    def __init__(self):
        # since pandas is a dependency of fastparquet
        # we need to import on first use
        fastparquet = import_optional_dependency(
            "fastparquet", extra="fastparquet is required for parquet support."
        )
        self.api = fastparquet

    def write(
        self,
        df: DataFrame,
        path,
        compression="snappy",
        index=None,
        partition_cols=None,
        storage_options: StorageOptions = None,
        **kwargs,
    ) -> None:
        self.validate_dataframe(df)
        # thriftpy/protocol/compact.py:339:
        # DeprecationWarning: tostring() is deprecated.
        # Use tobytes() instead.

        if "partition_on" in kwargs and partition_cols is not None:
            raise ValueError(
                "Cannot use both partition_on and "
                "partition_cols. Use partition_cols for partitioning data"
            )
        elif "partition_on" in kwargs:
            partition_cols = kwargs.pop("partition_on")

        if partition_cols is not None:
            kwargs["file_scheme"] = "hive"

        # cannot use get_handle as write() does not accept file buffers
        path = stringify_path(path)
        if is_fsspec_url(path):
            fsspec = import_optional_dependency("fsspec")

            # if filesystem is provided by fsspec, file must be opened in 'wb' mode.
            kwargs["open_with"] = lambda path, _: fsspec.open(
                path, "wb", **(storage_options or {})
            ).open()
        elif storage_options:
            raise ValueError(
                "storage_options passed with file object or non-fsspec file path"
            )

        with catch_warnings(record=True):
            self.api.write(
                path,
                df,
                compression=compression,
                write_index=index,
                partition_on=partition_cols,
                **kwargs,
            )

    def read(
        self, path, columns=None, storage_options: StorageOptions = None, **kwargs
    ) -> DataFrame:
        parquet_kwargs: dict[str, Any] = {}
        use_nullable_dtypes = kwargs.pop("use_nullable_dtypes", False)
        if Version(self.api.__version__) >= Version("0.7.1"):
            # We are disabling nullable dtypes for fastparquet pending discussion
            parquet_kwargs["pandas_nulls"] = False
        if use_nullable_dtypes:
            raise ValueError(
                "The 'use_nullable_dtypes' argument is not supported for the "
                "fastparquet engine"
            )
        path = stringify_path(path)
        handles = None
        if is_fsspec_url(path):
            fsspec = import_optional_dependency("fsspec")

            if Version(self.api.__version__) > Version("0.6.1"):
                parquet_kwargs["fs"] = fsspec.open(
                    path, "rb", **(storage_options or {})
                ).fs
            else:
                parquet_kwargs["open_with"] = lambda path, _: fsspec.open(
                    path, "rb", **(storage_options or {})
                ).open()
        elif isinstance(path, str) and not os.path.isdir(path):
            # use get_handle only when we are very certain that it is not a directory
            # fsspec resources can also point to directories
            # this branch is used for example when reading from non-fsspec URLs
            handles = get_handle(
                path, "rb", is_text=False, storage_options=storage_options
            )
            path = handles.handle

        parquet_file = self.api.ParquetFile(path, **parquet_kwargs)

        result = parquet_file.to_pandas(columns=columns, **kwargs)

        if handles is not None:
            handles.close()
        return result


@doc(storage_options=_shared_docs["storage_options"])
def to_parquet(
    df: DataFrame,
    path: FilePath | WriteBuffer[bytes] | None = None,
    engine: str = "auto",
    compression: str | None = "snappy",
    index: bool | None = None,
    storage_options: StorageOptions = None,
    partition_cols: list[str] | None = None,
    **kwargs,
) -> bytes | None:
    """
    Write a DataFrame to the parquet format.

    Parameters
    ----------
    df : DataFrame
    path : str, path object, file-like object, or None, default None
        String, path object (implementing ``os.PathLike[str]``), or file-like
        object implementing a binary ``write()`` function. If None, the result is
        returned as bytes. If a string, it will be used as Root Directory path
        when writing a partitioned dataset. The engine fastparquet does not
        accept file-like objects.

        .. versionchanged:: 1.2.0

    engine : {{'auto', 'pyarrow', 'fastparquet'}}, default 'auto'
        Parquet library to use. If 'auto', then the option
        ``io.parquet.engine`` is used. The default ``io.parquet.engine``
        behavior is to try 'pyarrow', falling back to 'fastparquet' if
        'pyarrow' is unavailable.
    compression : {{'snappy', 'gzip', 'brotli', 'lz4', 'zstd', None}},
        default 'snappy'. Name of the compression to use. Use ``None``
        for no compression. The supported compression methods actually
        depend on which engine is used. For 'pyarrow', 'snappy', 'gzip',
        'brotli', 'lz4', 'zstd' are all supported. For 'fastparquet',
        only 'gzip' and 'snappy' are supported.
    index : bool, default None
        If ``True``, include the dataframe's index(es) in the file output. If
        ``False``, they will not be written to the file.
        If ``None``, similar to ``True`` the dataframe's index(es)
        will be saved. However, instead of being saved as values,
        the RangeIndex will be stored as a range in the metadata so it
        doesn't require much space and is faster. Other indexes will
        be included as columns in the file output.
    partition_cols : str or list, optional, default None
        Column names by which to partition the dataset.
        Columns are partitioned in the order they are given.
        Must be None if path is not a string.
    {storage_options}

        .. versionadded:: 1.2.0

    kwargs
        Additional keyword arguments passed to the engine

    Returns
    -------
    bytes if no path argument is provided else None
    """
    if isinstance(partition_cols, str):
        partition_cols = [partition_cols]
    impl = get_engine(engine)

    path_or_buf: FilePath | WriteBuffer[bytes] = io.BytesIO() if path is None else path

    impl.write(
        df,
        path_or_buf,
        compression=compression,
        index=index,
        partition_cols=partition_cols,
        storage_options=storage_options,
        **kwargs,
    )

    if path is None:
        assert isinstance(path_or_buf, io.BytesIO)
        return path_or_buf.getvalue()
    else:
        return None


@doc(storage_options=_shared_docs["storage_options"])
def read_parquet(
    path,
    engine: str = "auto",
    columns=None,
    storage_options: StorageOptions = None,
    use_nullable_dtypes: bool = False,
    **kwargs,
) -> DataFrame:
    """
    Load a parquet object from the file path, returning a DataFrame.

    Parameters
    ----------
    path : str, path object or file-like object
        String, path object (implementing ``os.PathLike[str]``), or file-like
        object implementing a binary ``read()`` function.
        The string could be a URL. Valid URL schemes include http, ftp, s3,
        gs, and file. For file URLs, a host is expected. A local file could be:
        ``file://localhost/path/to/table.parquet``.
        A file URL can also be a path to a directory that contains multiple
        partitioned parquet files. Both pyarrow and fastparquet support
        paths to directories as well as file URLs. A directory path could be:
        ``file://localhost/path/to/tables`` or ``s3://bucket/partition_dir``.
    engine : {{'auto', 'pyarrow', 'fastparquet'}}, default 'auto'
        Parquet library to use. If 'auto', then the option
        ``io.parquet.engine`` is used. The default ``io.parquet.engine``
        behavior is to try 'pyarrow', falling back to 'fastparquet' if
        'pyarrow' is unavailable.
    columns : list, default=None
        If not None, only these columns will be read from the file.

    {storage_options}

        .. versionadded:: 1.3.0

    use_nullable_dtypes : bool, default False
        If True, use dtypes that use ``pd.NA`` as missing value indicator
        for the resulting DataFrame. (only applicable for the ``pyarrow``
        engine)
        As new dtypes are added that support ``pd.NA`` in the future, the
        output with this option will change to use those dtypes.
        Note: this is an experimental option, and behaviour (e.g. additional
        support dtypes) may change without notice.

        .. versionadded:: 1.2.0

    **kwargs
        Any additional kwargs are passed to the engine.

    Returns
    -------
    DataFrame
    """
    impl = get_engine(engine)

    return impl.read(
        path,
        columns=columns,
        storage_options=storage_options,
        use_nullable_dtypes=use_nullable_dtypes,
        **kwargs,
    )
